I am a beginner in keras and I have a pytorch code that I need to change it to keras, but I could not understand some part of it. specially I have problems in the size of the output shape. the shape of image
is (:, 3,32,32) and the first dimension of image
is the size of the batch. now, my question is: what this line do and what is the output shape:
image_yuv_ch = image[:, channel, :, :].unsqueeze_(1)
it adds a dimension in position 1? what is the output shape?:(
the size of filters was (64,8,8) and then we have filters.unsqueez_(1)
, is this means the new shape of filters
is (64,1,8,8)
?
what does this line do? image_conv = F.conv2d(image_yuv_ch, filters, stride=8)
is it the same as conv2d in keras what is the shape of output tensor from it? I also could not understand what view do? I know it tries to show tensor in new shape but in the below code I could not understand the output shape after each unsqueez_
, permute
or view
. could you please tell me what is the output shape of each line? Thank you in advance.
import torch.nn.functional as F
def apply_conv(self, image, filter_type: str):
if filter_type == 'dct':
filters = self.dct_conv_weights
elif filter_type == 'idct':
filters = self.idct_conv_weights
else:
raise('Unknown filter_type value.')
image_conv_channels = []
for channel in range(image.shape[1]):
image_yuv_ch = image[:, channel, :, :].unsqueeze_(1)
image_conv = F.conv2d(image_yuv_ch, filters, stride=8)
image_conv = image_conv.permute(0, 2, 3, 1)
image_conv = image_conv.view(image_conv.shape[0], image_conv.shape[1], image_conv.shape[2], 8, 8)
image_conv = image_conv.permute(0, 1, 3, 2, 4)
image_conv = image_conv.contiguous().view(image_conv.shape[0],
image_conv.shape[1]*image_conv.shape[2],
image_conv.shape[3]*image_conv.shape[4])
image_conv.unsqueeze_(1)
# image_conv = F.conv2d()
image_conv_channels.append(image_conv)
image_conv_stacked = torch.cat(image_conv_channels, dim=1)
return image_conv_stacked